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arxiv: 1004.3205 · v2 · submitted 2010-04-19 · 💻 cs.DS

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Differential Privacy and the Fat-Shattering Dimension of Linear Queries

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classification 💻 cs.DS
keywords querieslineardifferentialdimensionfat-shatteringprivacyaccuracyagnostic-learning
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In this paper, we consider the task of answering linear queries under the constraint of differential privacy. This is a general and well-studied class of queries that captures other commonly studied classes, including predicate queries and histogram queries. We show that the accuracy to which a set of linear queries can be answered is closely related to its fat-shattering dimension, a property that characterizes the learnability of real-valued functions in the agnostic-learning setting.

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